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A comparison of different machine learning algorithms, types and placements of activity monitors for physical activity classification

机译:不同机器学习算法的比较,活动监视器的类型和放置物理活动分类

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摘要

This study classified physical activities using supervised machine learning (SML) algorithms based on accelerometer measures. The influences of different types, placements, and monitor modalities of the GT3X+ and GT9X have been further analysed. Specifically, 9 healthy participants were recruited to perform 14 activities by wearing GT3X+ and GT9X together at the hip and the thigh, respectively. Four different SML algorithms were utilized and evaluated in the classification of physical activities. The experimental results showed that the performance of the SML algorithms would not be affected by different placements and monitor modalities. Support vector machine performed satisfactorily across all monitor modalities (around 89% accuracy rate). Meanwhile, in both placements of the hip and the thigh, the overall accuracy of the GT9X was not better than that of the GT3X+, and the overall accuracy of the combined mode (two monitors together) was not better than that of the single mode (one monitor). (C) 2020 Elsevier Ltd. All rights reserved.
机译:本研究基于加速度计测量,使用监督机学习(SML)算法进行分类体育活动。进一步分析了GT3X +和GT9X的不同类型,放置和监测模式的影响。具体而言,招募了9名健康参与者通过分别在臀部和​​大腿上佩戴GT3X +和GT9X来执行14个活动。在体育活动的分类中使用并评估了四种不同的SML算法。实验结果表明,SML算法的性能不会受到不同放置和监测方式的影响。支持向量机符合所有监控方式令人满意地执行(精度约为89%)。同时,在臀部和大腿的两个展示中,GT9X的整体精度并不优于GT3X +的总体精度,并且组合模式的总体精度(两个显示器在一起)并不优于单模的更好(一个显示器)。 (c)2020 elestvier有限公司保留所有权利。

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